OPTIMIZING FOR COST VERSUS PERFORMANCE: FINDING THE RIGHT BALANCE IN THE CLOUD

Authors

  • Raghava Satya SaiKrishna Dittakavi Independent Researcher, USA Author

Keywords:

Performance Evaluation, Cost-Evaluation, Cloud Computing, Optimization, Auto-Scaling

Abstract

Since its inception, professionals and business with various needs have widely used cloud computing. The concept of computing as a utility, in which computer resources can be consumed and paid for with the same ease as electricity, is made feasible by cloud computing and has tremendous economic appeal. One of the principal qualities of the cloud as a help is versatility upheld via auto-scaling capacities. With a solid financial allure, cloud computing makes conceivable processing as a utility, in which figuring assets can be consumed and paid for with a similar comfort as power. One of the fundamental qualities of the cloud as a help is versatility upheld via auto-scaling capacities. The auto-scaling cloud system permits changing assets to fulfill different needs powerfully.

By the by, existing cloud frameworks kept up with various cloud endeavors frequently offer different cloud administration costs for identical SLAs upon a few variables. In any case, existing cloud frameworks kept up with various cloud endeavors frequently offer different cloud administration costs for identical SLAs upon a few elements. This paper presents a model that figures an expense for every exhibition metric utilizing different equipment setups and zeroing in on logical registering. The fundamental objective of this approach is to adjust the compromise between cost furthermore execution involving various blends of parts for building the whole framework. The reception of the met heuristic Handle approach and the demonstration of auto-scaling components in this work can help look for the streamlined quality arrangement and functional administration for cloud administrations by and by.

References

J. Dean, S. Ghemawat, MapReduce: simplified data processing on large clusters, Communications of the ACM 51 (1) (2008) 107–113.

J. Ekanayake, S. Pallickara, G. Fox, MapReduce for data-intensive scientific analyses, in ESCIENCE'08: Proceedings of the 4th IEEE International Conference on eScience, IEEE Press, 2008, pp. 277–284.

Hogan, M.; Liu, F.; Sokol, A.; Tong, J. Nist cloud computing standards roadmap. NIST Spec. Publ. 2011, 35, 6–11. [Google Scholar].

Silva, B.; Matos, R.; Callou, G.; Figueiredo, J.; Oliveira, D.; Ferreira, J.; Dantas, J.; Junior, A.; Alves, V.; Maciel, P. Mercury: An Integrated Environment for Performance and Dependability Evaluation of General Systems. In Proceedings of the Industrial Track at 45th Dependable Systems and Networks Conference (DSN), Rio de Janeiro, Brazil, 22–25 June 2015. [Google Scholar].

Edwin, E.B.; Umamaheswari, P.; Thanka, M.R. An efficient and improved multi-objective optimized replication management with dynamic and cost aware strategies in cloud computing data center. Clust. Compute. 2019, 22, 11119–11128. [Google Scholar] [CrossRef].

Pinheiro, T.; Silva, F.A.; Fe, I.; Kosta, S.; Maciel, P. Performance and Data Traffic Analysis of Mobile Cloud Environments. In Proceedings of the 2018 IEEE International Conference on Systems, Man, and Cybernetics (SMC), Miyazaki, Japan, 7–10 October 2018; pp. 4100–4105. [Google Scholar].

A. N'u˜nez, J. Fern'andez, J. D. Garc´ıa, F. Garc´ıa, J. Carretero, New techniques for simulating high-performance MPI applications on large storage networks, Journal of Supercomputing 51 (1) (2010) 40–57.

R. Biswas, M. J. Djomehri, R. Hood, H. Jin, C. Kiris, S. Saini, An application-based performance characterization of the Columbia supercluster, in: S.C. '05: Proceedings of the 2005 ACM/IEEE conference on Supercomputing, IEEE Press, 2005, pp. 26–39.

S. Williams, J. Shalf, L. Oliker, S. Kamil, P. Husbands, K. Yelick, The potential of the cell processor for scientific computing, in: C.F.'

: Proceedings of the 3rd conference on Computing frontiers, ACM, 2006, pp. 9–20.

da Silva Pinheiro, T.F.; Silva, F.A.; Fé, I.; Kosta, S.; Maciel, P. Performance prediction for supporting mobile applications’ offloading. J. Supercomputer. 2018, 74, 4060–4103.

Dittakavi, Raghava Satya SaiKrishna. "AI-Optimized Cost-Aware Design Strategies for Resource-Efficient Applications." Journal of Science & Technology 4.1 (2023): 1-10.

Downloads

Published

2023-08-25